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Automatic Image Annotation and Retrieval using Cross-Media Relevance Models J. Jeon, V. Lavrenko and R. Manmathat Computer Science Department University of Massachusetts – Amherst Presenter: Carlos Diuk
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Introduction The Problem: Automatically annotate and retrieve images from large collections. Retrieval example: answer query “Tigers in grass” with
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Introduction Manual annotation being done in libraries. Different approaches to automatic image annotation: Co-occurence Model Translation Model Cross-media relevance model
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Introduction – related work Co-occurence Model Looks at co-occurence of words with image regions created using a regular grid. Translation Model Image annotation viewed as task of translating from vocabulary of blobs to vocabulary of words.
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Introduction – CMRM Cross-media relevance models (CMRM) Assume that images may be described from small vocabulary of blobs. From a training set of annotated images, learn the joint distribution of blobs and words.
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Introduction – CMRM Cross-media relevance models (CMRM) Allow query expansion: Standard technique for reducing ambiguity in information retrieval. Perform initial query and expand by using terms from the top relevant documents. Example in image context: tigers more often associated with grass, water, trees than with cars or computers.
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Introduction – CMRM Variations: Document based expansion PACMRM (probabilistic annotation CMRM) Blobs corresponding to each test image are used to generate words and associated probabilities. Each test generates a vector of probabilities for every word in vocabulary. FACMRM (fixed annotation-based CMRM) Use top N words from PACMRM to annotate images. Query based expansion DRCMRM (direct-retrieval CMRM) Query words used to generate a set of blob probabilities. Vector of blob probabilities compared with vector from test image using Kullback- Lieber divergence and resulting KL distance.
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Discrete features in images Segmentation of images into regions yields fragile and erroneous results. Normalized-cuts are used instead (Duygulu et al): 33 features extracted from images. K (=500) clustering algorithm used to cluster regions based on features. Vocabulary of 500 blobs.
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CMRM Algorithms Image I = {b 1.. b m } set of blobs Training collection of images J = {b 1.. b m ; w 1.. w n } Two problems: Given un-annotated image I, assign meaningful keywords. Given text query, retrieve images that contain objects mentioned.
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CMRM Algorithms Calculating probabilities.
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CMRM Algorithms Image retrieval INPUT: query Q = w 1.. w n and collection C of images OUTPUT: images described by query words. Annotation-based retrieval model (PACMRM- FACMRM) Annotate images as shown. Perform text retrieval as usual. Fixed-length annotation vs probabilistic annotation:
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CMRM Algorithms Image retrieval INPUT: query Q = w 1.. w n and collection C of images OUTPUT: images described by query words. Direct retrieval model (DRCMRM) Convert query into language of blobs, instead of images into words. Estimation: Ranking:
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Results Dataset Corel Stock Photo CDs (5000 images – 4000 training, 500 evaluation, 500 testing). 371 words and 500 blobs. Manual annotations. Metrics: Recall: number of correctly retrieved images divided by number of relevant images. Precision: number of correctly retrieved images divided by number of retrieved images. Comparisons Co-occurence vs Translation vs FACMRM
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Results Dataset Corel Stock Photo CDs (5000 images – 4000 training, 500 evaluation, 500 testing). 371 words and 500 blobs. Manual annotations. Metrics: Recall: number of correctly retrieved images divided by number of relevant images. Precision: number of correctly retrieved images divided by number of retrieved images. Comparisons Co-occurence vs Translation vs FACMRM
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Results Precision and recall for 70 one-word queries.
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Results PACMRM vs DRCMRM
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Some nice examples Automatically annotated as sunset, but not manually
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Some nice examples Response to query “pillar” Response to query “tiger”
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Some bad examples
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Questions - Discussion No semantic representation (just color, texture, shape). How could we annotate a newspaper’s collection? (“Kennedy”, not just “people”) Google: cooperative annotation? Google search for “tiger”: Google search for “Kennedy”:
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